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The Numpy 'modulus' function is used in a code to check if a certain time is an integral multiple of the time-step.

But some weird behavior is seeen.

  • numpy.mod(121e-12,1e-12) returns 1e-12
  • numpy.mod(60e-12,1e-12) returns 'a very small value' (compared to 1e-12).

If you play around numpy.mode('122-126'e-12,1e-12) it gives randomly 0 and 1e-12.

Can someone please explain why?

Thanks much

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According to the doc, np.mod(x1,x2)=x1-floor(x1/x2)*x2. The problem here is that you are working with very small values, a dark domain where floating point errors (truncation...) happen quite often and results are often unpredictable... I don't think you should spend a lot of time worrying about that.

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These are interesting quirks that dont appear in Matlab or Octave. The Matlab/Octave modulus function is defined the same but behaves much better for much smaller values. Matlab probably scales the two numbers into a range where computational accuracy is no longer an issue. Thanks. – greywanderer Aug 27 '12 at 23:11

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